Exploring Probability and Random Processes Using MATLAB®

Exploring Probability and Random Processes Using MATLAB®
Author :
Publisher : Educohack Press
Total Pages : 154
Release :
ISBN-10 : 9789361527906
ISBN-13 : 9361527908
Rating : 4/5 (908 Downloads)

Book Synopsis Exploring Probability and Random Processes Using MATLAB® by : Roshan Trivedi

Download or read book Exploring Probability and Random Processes Using MATLAB® written by Roshan Trivedi and published by Educohack Press. This book was released on 2025-02-20 with total page 154 pages. Available in PDF, EPUB and Kindle. Book excerpt: "Exploring Probability and Random Processes Using MATLAB®" offers a comprehensive guide to probability theory, stochastic processes, and their practical applications, focusing on intuitive understanding and MATLAB implementation. This book provides readers with a solid foundation in probability and stochastic processes while equipping them with tools and techniques for real-world scenarios. We begin with an introduction to probability theory, covering random variables, probability distributions, and statistical measures. Readers learn how to analyze and interpret uncertainty, make probabilistic predictions, and understand statistical inference principles. Moving on to stochastic processes, we explore discrete-time and continuous-time processes, Markov chains, and other key concepts. Practical examples and MATLAB code snippets illustrate essential concepts and demonstrate their implementation in MATLAB. One distinguishing feature is the emphasis on intuitive understanding and practical application. Complex mathematical concepts are explained clearly and accessibly, making the material approachable for readers with varying mathematical backgrounds. MATLAB examples provide hands-on experience and develop proficiency in using MATLAB for probability and stochastic processes analysis. Whether you're a student building a foundation in probability theory and stochastic processes, a researcher seeking practical data analysis tools, or a practitioner in engineering or finance, this book will provide the knowledge and skills needed to succeed. With a blend of theoretical insights and practical applications, "Exploring Probability and Random Processes Using MATLAB®" is an invaluable resource.


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